George Barbastathis - On the use of machine learning for computational imaging - IPAM at UCLA
Recorded 11 October 2022. George Barbastathis of the Massachusetts Institute of Technology presents "On the use of machine learning for computational imaging" at IPAM's Diffractive Imaging with Phase Retrieval Workshop. Abstract: Computational inverse problems always rely on regularization to overcome ill-conditionedness and ill-posedness. The utility of machine learning, at least of the supervised kind is therefore, in retrospect, obvious: given typical object-measurement pairs, the supervised architecture is supposed to learn the regularizing priors. The story, however, is more complicated than that: for example, should one include the physics captured in the forward operator explicitly into the learning architecture, or build a black box encompassing everything? And what if the forward operator itself is only partially known, or the cost of obtaining sufficient training pairs experimentally is prohibitive? While not claiming to have the ultimate answers, in my talk I will discuss what we learnt from implementations of machine learning-aided inverses in three classical inverse problems: retrieval of the phase of the electromagnetic field from intensity, retrieval of a 3D dielectric structure from limited-angle intensity projections, and quantitative analysis of highly scattering surfaces. The structure of such problems points to interesting directions for future joint optimization of the forward operators and machine learning inverse for better robustness to noise and other uncertainties (e.g. in the forward operator.) Learn more online at: http://www.ipam.ucla.edu/programs/wor...

Chris Metzler - Adversarial Sensing: Learning-Based Approach to Imaging & Sensing w/ Unknown Models
![Yann LeCun's $1B Bet Against LLMs [Part 1]](https://i.ytimg.com/vi/kYkIdXwW2AE/hqdefault.jpg?sqp=-oaymwEjCNACELwBSFryq4qpAxUIARUAAAAAGAElAADIQj0AgKJDeAE=&rs=AOn4CLDbV4izF3i-wxevCVIn7FJjoy1vlA)
Yann LeCun's $1B Bet Against LLMs [Part 1]

Quantum Consciousness and the Origin of Life

Yann LeCun: World Models: Enabling the next AI revolution

AlphaFold - The Most Useful Thing AI Has Ever Done

Andrej Karpathy: From Vibe Coding to Agentic Engineering w/ Stephanie Zhan

Politics Chat, June 18, 2026

The Hardest Questions in Physics | World Science Festival

Jfrog | Jfrog Artifactory | Jfrog Artifactory Tutorial | Artifactory Tutorial | Intellipaat

How AI Cracked the Protein Folding Code and Won a Nobel Prize

The Most Misunderstood Concept in Physics

6. Monte Carlo Simulation

Inside the Mind of Anthropic CEO Dario Amodei | The Circuit | Extended Interview

The Complete Cardiology Masterclass: Exam-Ready in One Video

Did Physics Secretly Bring Back AEther?

🔴LIVE : Stanford India Conference 2026 | India–US at the Crossroads | K Annamalai | 11-05-2026

Nobel Prize lecture: Demis Hassabis, Nobel Prize in Chemistry 2024

Large Language Models explained briefly

Brian Greene and Leonard Susskind: Quantum Mechanics, Black Holes and String Theory

